70 phd-in-embedded-systems-2015 PhD positions at Technical University of Munich in Germany
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is available from 01.11.2025. About us The Chair of Agrimechatronics (Prof. Oksanen) studies especially Intelligent Machines for Agriculture. The research themes include topics like tractors and other
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the subject ‘2025-Control-PhD’. Positions are available starting immediately. Applications may be considered until the position is filled. Diversity: We are determined to build an inclusive culture
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15.04.2025, Wissenschaftliches Personal The Lab for Artificial Intelligence in Medical Imaging (www.ai-med.de) is inviting applications for a fully funded PhD position in interpretable machine
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embedded in the outstanding scientific environment of the Beutenberg Campus, in particular the LPI, providing state-of-the-art research facilities and a highly integrative network of life science groups
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13.05.2025, Wissenschaftliches Personal The Professorship of Particle and Fiber Technology for Bio-Based Materials at Campus Straubing is looking for a PhD candidate (f/m/d) in Polymer Physics
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10.03.2025, Wissenschaftliches Personal The Professorship for Ethics of AI and Neuroscience at TUM is offering a fully funded PhD scholarship (4 years, €2,000/month) for the HARMONY project
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Full time position starting 1. September or as soon as possible thereafter. 07.05.2025, Wissenschaftliches Personal The Plant Micronutrient Physiology group led by Dr. Thomas Alcock is a new group
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10.10.2022, Wissenschaftliches Personal For our team, we are looking for a full-time PhD candidate on the topic of “Geolocation text embeddings for social media data”. About us The TUM-Professorship
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systems on different temporal and spatial scales. For our Research Group Applied Optimization we are looking for a PhD student: New Deep Learning - based Framework for Energy Modelling: Combination
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systems on different temporal and spatial scales. For our Research Group Applied Optimization we are looking for a Research Associate / PhD: Physics-informed deep learning for PDE-constrained optimization